基于AI的店铺分类方法及其与人类的比较研究

Mrouj Almuhajri, C. Suen
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引用次数: 0

摘要

人工智能算法的快速发展使人们更加关注路牌的普及。一些街道标志具有一致的形状和预定义的颜色和字体,如交通标志,而另一些则具有视觉可变性,如商店招牌。这种变化给基于人工智能的系统分类带来了复杂的挑战。本文对ShoS数据集的标注进行了扩展,增加了店铺分类的属性。然后,利用扩展的ShoS数据集对两个分类器进行训练和测试。支持向量机的f1得分达到89.33%,表现出良好的性能。将分类性能与人类性能进行比较,结果表明我们的分类器比人类性能高出约15%。对结果进行了讨论,为进一步提高分类水平提供了影响因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI Based Approach for Shop Classification and a Comparative Study with Human
The rapid advancements in artificial intelligence algorithms have sharpened the focus on street signs due to their prevalence. Some street signs have consistent shapes and pre-defined colors and fonts, such as traffic signs while others are characterized by their visual variability like shop signboards. This variations create a complicated challenge for AI-based systems to classify them. In this paper, the annotation of the ShoS dataset were extended to include more attributes for shop classification. Then, two classifiers were trained and tested utilizing the extended ShoS dataset. SVM showed great performance as its F1-score reached 89.33\%. The classification performance was compared with human performance, and the results showed that our classifier excelled over human performance by about 15\%. The results were discussed, so the factors that affect classification were provided for further enhancement.
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